First of all, your plot shows an aberrant lot. The lot to lot variance does not account for such a difference. A special cause had an effect. Is the special cause known? Should this lot determine the expiry for future lots?
Secondly, which ICH guidance are you following, Q1E or Q1A? They recommend pooling the data from all your lots and determining if the change over time is consistent from one batch to another. This method fits a model to all the data with a term for time, lot, and time crossed with lot.
Lastly, I apologize for not explaining how to use the inverse prediction. Select Analyze > Fit Model. (This much is the same as Karen's suggestion.) Select the data column with the impurity data and click Y. Select the data column with the months and click Add. (At this point, you could have selected months and lot, click Macros, and select Factorial to Degree to use the pooling approach. If you are interested in pursuing pooling, let me know and I will explain further in another response.) Now click Run. From here, click the red triangle at the top and select Estimates > Inverse Prediction. Now follow the steps described in a previous post.
Hope this helps!